Kinetic description and convergence analysis of genetic algorithms for global optimization

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Abstract

Genetic Algorithms (GA) are a class of metaheuristic global optimization methods inspired by the process of natural selection among individuals in a population. Despite their widespread use, a comprehensive theoretical analysis of these methods remains challenging due to the complexity of the heuristic mechanisms involved. In this work, relying on the tools of statistical physics, we take a first step towards a mathematical understanding of GA by showing how their behavior for a large number of individuals can be approximated through a time-discrete kinetic model. This allows us to prove the convergence of the algorithm towards a global minimum under mild assumptions on the objective function for a popular choice of selection mechanism. Furthermore, we derive a time-continuous model of GA, represented by a Boltzmann-like partial differential equation, and establish relations with other kinetic and mean-field dynamics in optimization. Numerical experiments support the validity of the proposed kinetic approximation and investigate the asymptotic configurations of the GA particle system for different selection mechanisms and benchmark problems.

Original languageEnglish
Pages (from-to)641-668
Number of pages28
JournalCommunications in Mathematical Sciences
Volume23
Issue number3
DOIs
Publication statusPublished - 8 Feb 2025

Keywords

  • Boltzmann equation
  • Genetic algorithms
  • global optimization
  • mean field equations
  • stochastic particle systems

ASJC Scopus subject areas

  • General Mathematics
  • Applied Mathematics

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